Base language models class.
Get the value of the verbose global setting.
Convert a sequence of messages to strings and concatenate them into one string.
Get a GPT-2 tokenizer instance.
This function is cached to avoid re-loading the tokenizer every time it is called.
Interface for a caching layer for LLMs and Chat models.
The cache interface consists of the following methods:
llm_string.llm_string.In addition, the cache interface provides an async version of each method.
The default implementation of the async methods is to run the synchronous method in an executor. It's recommended to override the async methods and provide async implementations to avoid unnecessary overhead.
Message from an AI.
An AIMessage is returned from a chat model as a response to a prompt.
This message represents the output of the model and consists of both the raw output as returned by the model and standardized fields (e.g., tool calls, usage metadata) added by the LangChain framework.
Base abstract message class.
Messages are the inputs and outputs of a chat model.
Examples include HumanMessage, AIMessage, and SystemMessage.
Chat prompt value which explicitly lists out the message types it accepts.
For use in external schemas.
Base abstract class for inputs to any language model.
PromptValues can be converted to both LLM (pure text-generation) inputs and chat model inputs.
String prompt value.
A unit of work that can be invoked, batched, streamed, transformed and composed.
invoke/ainvoke: Transforms a single input into an output.batch/abatch: Efficiently transforms multiple inputs into outputs.stream/astream: Streams output from a single input as it's produced.astream_log: Streams output and selected intermediate results from an input.Built-in optimizations:
Batch: By default, batch runs invoke() in parallel using a thread pool executor. Override to optimize batching.
Async: Methods with 'a' prefix are asynchronous. By default, they execute the sync counterpart using asyncio's thread pool. Override for native async.
All methods accept an optional config argument, which can be used to configure execution, add tags and metadata for tracing and debugging etc.
Runnables expose schematic information about their input, output and config via the input_schema property, the output_schema property and config_schema method.
Runnable objects can be composed together to create chains in a declarative way.
Any chain constructed this way will automatically have sync, async, batch, and streaming support.
The main composition primitives are RunnableSequence and RunnableParallel.
RunnableSequence invokes a series of runnables sequentially, with one Runnable's output serving as the next's input. Construct using the | operator or by passing a list of runnables to RunnableSequence.
RunnableParallel invokes runnables concurrently, providing the same input to each. Construct it using a dict literal within a sequence or by passing a dict to RunnableParallel.
For example,
from langchain_core.runnables import RunnableLambda # A RunnableSequence constructed using the `|` operator sequence = RunnableLambda(lambda x: x + 1) | RunnableLambda(lambda x: x * 2) sequence.invoke(1) # 4 sequence.batch([1, 2, 3]) # [4, 6, 8] # A sequence that contains a RunnableParallel constructed using a dict literal sequence = RunnableLambda(lambda x: x + 1) | { "mul_2": RunnableLambda(lambda x: x * 2), "mul_5": RunnableLambda(lambda x: x * 5), } sequence.invoke(1) # {'mul_2': 4, 'mul_5': 10} All Runnables expose additional methods that can be used to modify their behavior (e.g., add a retry policy, add lifecycle listeners, make them configurable, etc.).
These methods will work on any Runnable, including Runnable chains constructed by composing other Runnables. See the individual methods for details.
For example,
from langchain_core.runnables import RunnableLambda import random def add_one(x: int) -> int: return x + 1 def buggy_double(y: int) -> int: """Buggy code that will fail 70% of the time""" if random.random() > 0.3: print('This code failed, and will probably be retried!') # noqa: T201 raise ValueError('Triggered buggy code') return y * 2 sequence = ( RunnableLambda(add_one) | RunnableLambda(buggy_double).with_retry( # Retry on failure stop_after_attempt=10, wait_exponential_jitter=False ) ) print(sequence.input_schema.model_json_schema()) # Show inferred input schema print(sequence.output_schema.model_json_schema()) # Show inferred output schema print(sequence.invoke(2)) # invoke the sequence (note the retry above!!) As the chains get longer, it can be useful to be able to see intermediate results to debug and trace the chain.
You can set the global debug flag to True to enable debug output for all chains:
from langchain_core.globals import set_debug set_debug(True) Alternatively, you can pass existing or custom callbacks to any given chain:
from langchain_core.tracers import ConsoleCallbackHandler chain.invoke(..., config={"callbacks": [ConsoleCallbackHandler()]}) For a UI (and much more) checkout LangSmith.
Runnable that can be serialized to JSON.
A container for results of an LLM call.
Both chat models and LLMs generate an LLMResult object. This object contains the generated outputs and any additional information that the model provider wants to return.
LangSmith parameters for tracing.
Abstract base class for interfacing with language models.
All language model wrappers inherited from BaseLanguageModel.